HMM-GMM model's size selection methodology for bioacoustics-based diagnostic classification

P. Mayorga, D. Ibarra, C. Druzgalski, V. Zeljkovic
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引用次数: 1

Abstract

This paper presents a methodology for optimized utilization of merged Hidden Markov Models and Mixed Gaussian Model to classify lung sounds (LS) and heart sounds (HS) as a part of cardiopulmonary diagnostic assessment. Specifically this method was used as a criterion to determine most advantageous number of clusters for the HMMGMM model calculation. For this purpose, the LS and HS characteristics were evaluated in terms of MFCC (Melfrequency cepstral coefficients) and Quantile vectors. The analysis for the number of clusters was based on utilization of dendrograms, silhouettes, and the Bayesian Information Criterion (BIC). The merged HMM-GMM models for LS signals with Quartiles offered excellent results, while for HS signals, the best results were obtained with MFCC vectors. In both groups of LS and HS signals, a high degree classification efficiency was obtained reaching 100% for studied sets of signals. In particular, the results demonstrate that utilizing BIC or dendrograms as a part of optimized criterion enhances efficiency of merged HMM-GMM models in diagnostic classification of cardiopulmonary acoustic signals.
基于生物声学诊断分类的HMM-GMM模型尺寸选择方法
本文提出了一种优化利用隐马尔可夫模型和混合高斯模型对肺音(LS)和心音(HS)进行分类的方法,作为心肺诊断评估的一部分。具体来说,将该方法作为确定HMMGMM模型计算中最有利簇数的标准。为此,利用melfcc (Melfrequency倒谱系数)和分位数向量对LS和HS特性进行了评价。聚类数量的分析是基于树形图、轮廓和贝叶斯信息准则(BIC)的利用。合并的HMM-GMM模型对于LS信号的四分位数具有很好的效果,而对于HS信号,使用MFCC向量获得了最好的效果。在LS和HS两组信号中,所研究的信号集都获得了很高的分类效率,达到100%。特别是,研究结果表明,利用BIC或树形图作为优化标准的一部分,可以提高合并HMM-GMM模型在心肺声信号诊断分类中的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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